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Published byUrsula Lambert Modified over 9 years ago
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SIGCOMM 2011
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Outline Introduction Datasets and Metrics Analysis Techniques Engagement View Level Viewer Level Lessons Conclusion
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Introduction Internet video has become more and more popular What impacts engagement?! Not well understood yet
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Introduction Given the same video, does Quality impact Engagement?! What are the most critical metrics? Do these critical metrics differ across genres? How much does optimizing a metric help?
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Datasets and Metrics Data Collection A week of data from multiple premium video sites & full census measurement from video player Video Genres Live LVoD SVoD
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Datasets and Metrics Quality Metrics Buffering Ratio Rate of Buffering Join time Rendering Quality Average Bit Rate
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Datasets and Metrics Two Engagement Granularities View Play time of a video session Viewer Total play time by a viewer in a period of time Total number of views by a viewer in a period of time
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Analysis Techniques Which metrics matter most Are metrics independent? How do we quantify the impact?
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Analysis Techniques Qualitative Correlation Coefficient Information Gain Linear Regression Quantitative
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Analysis Techniques An simple example
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View Level Engagement Long VoD Content - Correlation
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View Level Engagement Long VoD Content - Correlation Most important metric Buffering ratio Less important metrics Rendering quality, Join time
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View Level Engagement Long VoD Content – Information Gain
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View Level Engagement Long VoD Content – Information Gain Bit rate becomes the most important metric Why??????
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View Level Engagement Live Content
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View Level Engagement Live Content Buffering Ration remains the most significant Bitrate and Rate of Buffering matter much more
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View Level Engagement Live Content Rendering Quality negatively correlated?! User behavior matters
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View Level Engagement Short VoD Content
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View Level Engagement Short VoD Content Similar to long VoD content Buffering ration remains the strongest Rendering Quality is less important
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View Level Engagement Quantitative Impact Not apply regression to all the data Only apply regression to the segment that looks like linear 0-10% range of Buffering ratio
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View Level Engagement Summary BufRatio is the most important quality metric. For live content, AvgBitrate in addition to BufRatio is a key quality metric. A 1% increase in BufRatio can decrease 1 to 3 minutes ofviewing time. JoinTime has significantly lower impact on view- level engagement than the other metrics RendQual in live video highlights the need of considering context of actual user and system behavior
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Viewer Level Engagement Buffering ratio vs. play time
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Viewer Level Engagement Buffering ratio vs. # of views
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Viewer Level Engagement Summary Both the # of views and the total play time are impacted by the quality metrics Correlation between the engagement metrics and the quality metrics becomes visually and quantitatively more striking at the viewer level The join time, which seemed less relevant at the view level, has non-trivial impact at the viewer level
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Lesson Learned The need for complementary analysis All of you are right. The reason every one of you is telling it differently is because each one of you touched a different part of the elephant. So, actually the elephant has all the features you mentioned. Combination of Correlation and Information gain
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Lesson Learned The importance of context Lies, damned lies, and statistics Together with the context of the human and operating factors
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Lesson Learned Toward video quality index Provide objective index for service providers and researchers ex: MOS More dimensions More play type More Content type Etc…
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Conclusion
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